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基于全卷积网络的脑电图像自动癫痫发作检测。

Automatic seizure detection based on imaged-EEG signals through fully convolutional networks.

机构信息

Department of Biomedical Engineering, Universidad de los Andes, Bogotá, Colombia.

Center for Research and Formation in Artificial Intelligence (CINFONIA), Universidad de los Andes, Bogotá, Colombia.

出版信息

Sci Rep. 2020 Dec 11;10(1):21833. doi: 10.1038/s41598-020-78784-3.

Abstract

Seizure detection is a routine process in epilepsy units requiring manual intervention of well-trained specialists. This process could be extensive, inefficient and time-consuming, especially for long term recordings. We proposed an automatic method to detect epileptic seizures using an imaged-EEG representation of brain signals. To accomplish this, we analyzed EEG signals from two different datasets: the CHB-MIT Scalp EEG database and the EPILEPSIAE project that includes scalp and intracranial recordings. We used fully convolutional neural networks to automatically detect seizures. For our best model, we reached average accuracy and specificity values of 99.3% and 99.6%, respectively, for the CHB-MIT dataset, and corresponding values of 98.0% and 98.3% for the EPILEPSIAE patients. For these patients, the inclusion of intracranial electrodes together with scalp ones increased the average accuracy and specificity values to 99.6% and 58.3%, respectively. Regarding the other metrics, our best model reached average precision of 62.7%, recall of 58.3%, F-measure of 59.0% and AP of 54.5% on the CHB-MIT recordings, and comparatively lowers performances for the EPILEPSIAE dataset. For both databases, the number of false alarms per hour reached values less than 0.5/h for 92% of the CHB-MIT patients and less than 1.0/h for 80% of the EPILEPSIAE patients. Compared to recent studies, our lightweight approach does not need any estimation of pre-selected features and demonstrates high performances with promising possibilities for the introduction of such automatic methods in the clinical practice.

摘要

癫痫单元中的癫痫发作检测需要经过专门培训的专家进行手动干预。这个过程可能会非常广泛、低效且耗时,尤其是对于长期记录而言。我们提出了一种使用脑信号的图像 EEG 表示来自动检测癫痫发作的方法。为了实现这一目标,我们分析了来自两个不同数据集的 EEG 信号:CHB-MIT 头皮 EEG 数据库和包含头皮和颅内记录的 EPILEPSIAE 项目。我们使用全卷积神经网络自动检测癫痫发作。对于我们的最佳模型,我们在 CHB-MIT 数据集上分别达到了平均准确率和特异性值 99.3%和 99.6%,在 EPILEPSIAE 患者上的对应值分别为 98.0%和 98.3%。对于这些患者,将颅内电极与头皮电极一起纳入可将平均准确率和特异性值分别提高到 99.6%和 58.3%。对于其他指标,我们的最佳模型在 CHB-MIT 记录上的平均精度为 62.7%,召回率为 58.3%,F1 度量值为 59.0%,AP 值为 54.5%,而在 EPILEPSIAE 数据集上的性能相对较低。对于这两个数据库,CHB-MIT 患者中有 92%的患者每小时的误报数小于 0.5/h,EPILEPSIAE 患者中有 80%的患者每小时的误报数小于 1.0/h。与最近的研究相比,我们的轻量级方法不需要任何预选特征的估计,并展示出具有高性能的结果,为在临床实践中引入这种自动方法提供了有希望的可能性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/143b/7732993/bba99e60ce49/41598_2020_78784_Fig1_HTML.jpg

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